A pattern-recognition-based clustering method for non-invasive diagnosis and classification of various gastric conditions.

IF 1.1 4区 化学 Q4 PHYSICS, ATOMIC, MOLECULAR & CHEMICAL
Abhijit Maity, Sayoni Bhattacharya, Anil C Mahato, Sujit Chaudhuri, Manik Pradhan
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引用次数: 0

Abstract

Conventional endoscopic biopsy tests are not suitable for early detection of the acute onset and progression of peptic ulcer as well as various gastric complications. This also limits its suitability for widespread population-based screening and consequently, many people with complex gastric phenotypes remain undiagnosed. Here, we demonstrate a new non-invasive methodology for accurate diagnosis and classification of various gastric disorders exploiting a pattern-recognition-based cluster analysis of a breathomics dataset generated from a simple residual gas analyzer-mass spectrometry. The clustering approach recognizes unique breathograms and "breathprints" signatures that clearly reflect the specific gastric condition of an individual person. The method can selectively distinguish the breath of peptic ulcer and other gastric dysfunctions like dyspepsia, gastritis, and gastroesophageal reflux disease patients from the exhaled breath of healthy individuals with high diagnostic sensitivity and specificity. Moreover, the clustering method exhibited a reasonable power to selectively classify the early-stage and high-risk gastric conditions with/without ulceration, thus opening a new non-invasive analytical avenue for early detection, follow-up, and fast population-based robust screening strategy of gastric complications in the real-world clinical domain.

一种基于模式识别的聚类方法,用于各种胃病的无创诊断和分类。
常规的内镜活检检查不适合早期发现消化性溃疡的急性发作和进展以及各种胃并发症。这也限制了它对广泛的基于人群的筛查的适用性,因此,许多具有复杂胃表型的人仍未被诊断出来。在这里,我们展示了一种新的非侵入性方法,用于准确诊断和分类各种胃部疾病,该方法利用基于模式识别的呼吸组学数据集聚类分析,该数据集由简单的残留气体分析仪-质谱法生成。聚类方法识别独特的呼吸图和“呼吸指纹”特征,这些特征清楚地反映了个体的特定胃部状况。该方法可选择性地将消化性溃疡及消化不良、胃炎、胃食管反流病等胃功能障碍患者的呼气与健康人的呼气区分开来,具有较高的诊断敏感性和特异性。此外,聚类方法在有/无溃疡的早期和高风险胃部疾病的选择性分类方面表现出合理的能力,从而为现实世界临床领域中早期发现、随访和快速基于人群的胃部并发症稳健筛查策略开辟了新的无创分析途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.40
自引率
7.70%
发文量
16
审稿时长
>12 weeks
期刊介绍: JMS - European Journal of Mass Spectrometry, is a peer-reviewed journal, devoted to the publication of innovative research in mass spectrometry. Articles in the journal come from proteomics, metabolomics, petroleomics and other areas developing under the umbrella of the “omic revolution”.
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